We are interested in the following general question: is it pos-\ud sible to abstract knowledge that is generated while learning\ud the solution of a problem, so that this abstraction can ac-\ud celerate the learning process? Moreover, is it possible to\ud transfer and reuse the acquired abstract knowledge to ac-\ud celerate the learning process for future similar tasks? We\ud propose a framework for conducting simultaneously two lev-\ud els of reinforcement learning, where an abstract policy is\ud learned while learning of a concrete policy for the problem,\ud such that both policies are refined through exploration and\ud interaction of the agent with the environment. We explore\ud abstraction both to accelerate the learning process for an ...
This paper discusses a system that accelerates reinforcement learning by using transfer from related...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
Transfer in reinforcement learning refers to the notion that generalization should occur not only wi...
We are interested in the following general question: is it pos- sible to abstract knowledge that is ...
Reinforcement learning (RL) enables an agent to find a solution to a problem by interacting with the...
Reinforcement learning (RL) enables an agent to find a solution to a problem by interacting with the...
Abstract—Reinforcement learning enables an agent to learn behavior by acquiring experience through t...
Reinforcement learning (RL) models the learning process of humans, but as exciting advances are made...
Successful reinforcement learning requires large amounts of data, compute, and some luck. We explore...
Transfer learning is an inherent aspect of human learning. When humans learn to perform a task, we r...
People grow up every day exposed to the infinite state space environment interacting with active bio...
Reinforcement learning presents a challenging problem: agents must generalize experiences, efficient...
Reinforcement learning has proven capable of extending the applicability of machine learning to doma...
We characterise the problem of abstraction in the context of deep reinforcement learning. Various we...
Agents, physical and virtual entities that interact with theirenvironment, are becoming increasingly...
This paper discusses a system that accelerates reinforcement learning by using transfer from related...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
Transfer in reinforcement learning refers to the notion that generalization should occur not only wi...
We are interested in the following general question: is it pos- sible to abstract knowledge that is ...
Reinforcement learning (RL) enables an agent to find a solution to a problem by interacting with the...
Reinforcement learning (RL) enables an agent to find a solution to a problem by interacting with the...
Abstract—Reinforcement learning enables an agent to learn behavior by acquiring experience through t...
Reinforcement learning (RL) models the learning process of humans, but as exciting advances are made...
Successful reinforcement learning requires large amounts of data, compute, and some luck. We explore...
Transfer learning is an inherent aspect of human learning. When humans learn to perform a task, we r...
People grow up every day exposed to the infinite state space environment interacting with active bio...
Reinforcement learning presents a challenging problem: agents must generalize experiences, efficient...
Reinforcement learning has proven capable of extending the applicability of machine learning to doma...
We characterise the problem of abstraction in the context of deep reinforcement learning. Various we...
Agents, physical and virtual entities that interact with theirenvironment, are becoming increasingly...
This paper discusses a system that accelerates reinforcement learning by using transfer from related...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
Transfer in reinforcement learning refers to the notion that generalization should occur not only wi...